基于PCA的手写体卡纳达语特征向量识别

S. K. Sridharamurthy, H. Reddy
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引用次数: 2

摘要

提出了一种基于主成分分析的特征选择方法,用于分割(孤立)卡纳达语字符的分类。采用人工神经网络作为分类器。神经网络有能力像我们一样通过日常经验学习,并做出敏感的决定,这使它们有能力解决传统计算难以解决的问题。手写字符被扫描转换为二值图像,并归一化为50 × 50像素的大小。利用空间坐标提取特征。然后利用这些空间特征进行主成分分析,选择突出的特征,并将其交给神经网络进行分类。该方法在综合数据库上的应用,提高了结果的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PCA based feature vector for handwritten Kannada characters recognition
An approach for selection of features using principal component analysis technique to classify segmented (isolated) Kannada characters is presented in this paper. Artificial neural network is used as classifier. The ability of neural networks to learn by ordinary experience, as we do, and to take sensitive decisions give them the power to solve problems found intractable or difficult for traditional computation. Handwritten characters are scan converted to binary images and normalized to a size of 50 × 50 pixels. The features are extracted using spatial co ordinates. Prominent features are then selected by principal component analysis using these spatial features, and are given to neural network for classification. With the implementation of this approach on a comprehensive database, higher degree of accuracy in results has been obtained.
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